Image Provenance Analysis at Scale

19 Jan 2018Daniel MoreiraAparna BharatiJoel BroganAllan PintoMichael ParowskiKevin W. BowyerPatrick J. FlynnAnderson RochaWalter J. Scheirer

Prior art has shown it is possible to estimate, through image processing and computer vision techniques, the types and parameters of transformations that have been applied to the content of individual images to obtain new images. Given a large corpus of images and a query image, an interesting further step is to retrieve the set of original images whose content is present in the query image, as well as the detailed sequences of transformations that yield the query image given the original images... (read more)

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